SLCRF: Subspace Learning with Conditional Random Field for Hyperspectral
Image Classification
- URL: http://arxiv.org/abs/2010.03115v1
- Date: Wed, 7 Oct 2020 02:25:32 GMT
- Title: SLCRF: Subspace Learning with Conditional Random Field for Hyperspectral
Image Classification
- Authors: Yun Cao, Jie Mei, Yuebin Wang, Liqiang Zhang, Junhuan Peng, Bing
Zhang, Lihua Li, and Yibo Zheng
- Abstract summary: Subspace learning (SL) plays an important role in hyperspectral image (HSI) classification, since it can provide an effective solution to reduce the redundant information in the image pixels of HSIs.
Previous works about SL aim to improve the accuracy of HSI recognition.
A novel SL method that includes the probability assumption called subspace learning with conditional random field (SLCRF) is developed.
- Score: 13.541897463935305
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Subspace learning (SL) plays an important role in hyperspectral image (HSI)
classification, since it can provide an effective solution to reduce the
redundant information in the image pixels of HSIs. Previous works about SL aim
to improve the accuracy of HSI recognition. Using a large number of labeled
samples, related methods can train the parameters of the proposed solutions to
obtain better representations of HSI pixels. However, the data instances may
not be sufficient enough to learn a precise model for HSI classification in
real applications. Moreover, it is well-known that it takes much time, labor
and human expertise to label HSI images. To avoid the aforementioned problems,
a novel SL method that includes the probability assumption called subspace
learning with conditional random field (SLCRF) is developed. In SLCRF, first,
the 3D convolutional autoencoder (3DCAE) is introduced to remove the redundant
information in HSI pixels. In addition, the relationships are also constructed
using the spectral-spatial information among the adjacent pixels. Then, the
conditional random field (CRF) framework can be constructed and further
embedded into the HSI SL procedure with the semi-supervised approach. Through
the linearized alternating direction method termed LADMAP, the objective
function of SLCRF is optimized using a defined iterative algorithm. The
proposed method is comprehensively evaluated using the challenging public HSI
datasets. We can achieve stateof-the-art performance using these HSI sets.
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